冰材料破坏包络面数据驱动建模

IF 2.3 4区 地球科学 Q4 GEOGRAPHY, PHYSICAL
Jiao Li , MingDe Shen , ZhiWei Zhou , RuiQiang Bai
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引用次数: 0

摘要

冰材料的强度特性对海洋工程和冰工程中冰与结构相互作用的分析至关重要。在本研究中,使用了六种机器学习方法来预测冰材料包络面的强度。通过收集前人文献报道的1481个试验数据,首先建立了冰强度数据库。采用二次强度准则来描述冰材料在不同材料性能和实验室条件下的破坏行为。采用6种机器学习方法对该强度准则中的3个模型参数进行了预测。通过3个静力学指标对6种机器学习方法的预测能力进行评价,并对6种机器学习方法的综合仿真能力进行排序。选择三种机器学习算法进行改进和优化,并进一步探索三种算法的仿真能力。优化结果表明,集成算法在预测冰强度方面的改进潜力远远高于SVM算法和GPR算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven modeling of failure envelope surface of ice materials
The strength characteristics of ice materials are crucial for the analysis of the interaction between ice and structure in ocean engineering and ice engineering. In this investigation, six machine learning methods were utilized to predict the strength of the envelope surface of ice materials. The database for the ice strength was first established by collecting 1,481 testing data reported in the previous literatures. A quadric strength criterion was adopted to describe failure behaviors of ice materials under different conditions of material property and laboratory. Three model parameters in this strength criterion were forecasted by using six machine learning methods. The prediction capacities of six machine learning methods were evaluated by three statics indices, and the integrated simulation ability of six machine learning methods was arranged. Three machine learning algorithms were selected to be improved and optimized, and the simulation capacity of the three algorithms was further explored. The optimization results indicate that the improved potential of the Ensemble algorithm is much higher than that of the SVM algorithm and the GPR algorithm for predicting the ice strength.
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